In the Internet-of-Things (IoT) era, the development of Wireless Body Area Networks (WBANs) and their applications in big data infrastructure has gotten a lot of attention from the medical research community. Since sensor nodes are low-powered devices that require heterogeneous Quality-of-Service (QoS), managing large amounts of medical data is critical in WBANs. Therefore, effectively aggregating a large volume of medical data is important. In this context, we propose a quality-driven and energy-efficient big data aggregation approach for cloud-assisted WBANs. For both intra-BAN (Phase I) and inter-BAN (Phase II) communications, the aggregation approach is cost-effective. Extensive simulation results show that the proposed approach DEBA greatly improves network efficiency in terms of aggregation delay and cost as compared to existing schemes.
翻译:在互联网时代,无线机体区域网络的发展及其在大数据基础设施中的应用引起了医学研究界的极大关注,由于传感器节点是低功率装置,需要不同服务质量(QOS),管理大量医疗数据对WBAN来说至关重要,因此,有效地汇集大量医疗数据很重要,在这方面,我们提议对云型辅助型网络采用质量驱动和节能的大数据汇总方法。对于阿尔巴尼亚(第一阶段)内部通信和BAN(第二阶段)之间通信而言,汇总方法具有成本效益。广泛的模拟结果表明,拟议的DEBA方法在集合延迟和成本方面大大提高了网络效率。